Inkscape Training Course
This course offers a hands-on introduction to Inkscape, an open-source vector graphics application extensively utilized for producing professional-grade visuals such as logos, icons, infographics, diagrams, and marketing collateral.
Through guided, practical exercises, participants will master the core features and tools of Inkscape—including shapes, paths, layers, color management, and typography—while addressing real-world design requirements. The training also highlights best practices for file organization, collaborative workflows, and exporting artwork for both digital and print media.
This course is available as onsite live training in France or online live training.Course Outline
Introduction
- Understanding Inkscape
- Key Applications of Inkscape
- Installing Inkscape
Interface Overview
- Menu Bar
- Command Bar
- Snap Controls
- Toolbox
- Dialogs
- Basic Preferences
Working with Diagrams
- Rectangle Tool
- Selection and Transformation
- Selection Options
- Transform Dialog
- Navigation Techniques
- Duplicating Elements
- Saving Work
- Color Swatches
- Fill and Stroke Dialog
- Paint Bucket Tool
- The Dropper Tool
- Cloning Objects
- Connectors
- Aligning and Distributing
- Stroke Options
- Node Tool
- Text Tool Fundamentals
- Importing Raster Images
- Exporting Graphics
- Project Wrap-up
Designing an Icon
- Ellipse Tool and Options
- Star Tool and Options
- Offsets
- Spirals
- Gradients
- Combining Paths
- Previewing the Icon
- Saving an .ico file and Review
Creating Logos
- Basic Tweak Tool
- Shatter Effect
- Logo Typography
- Layers
- Live Path Effects
- Texturing Logo Text
- Masking: Reflections
- Grouping, Saving, and Review
Designing Advertisements and Flyers
- Pencil Tool
- Graphic Brushes
- Pen Tool Fundamentals
- Pen Tool Options
- Calligraphy Tool
- Creating Backgrounds with Interpolate
- Clipping Paths
- Exploring Extensions
- Text-based Logo Design
- Setting up Text Frames
- Filters
- Text-on-a-Path
Bits and Pieces
Open Training Courses require 5+ participants.
Inkscape Training Course - Booking
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NobleProg offers professional training programs designed specifically for companies and organizations. These trainings are not intended for individuals.
Testimonials (1)
The trainer really targeted our need to a very specific case study and was able to adapt to the situation (as the solutions to our problematic evolved during the course), beyond the upstream preparation he did.
Anne-Sophie Schwindenhammer
Course - Inkscape
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